veriFIRE: Verifying an Industrial, Learning-Based Wildfire Detection System

12/06/2022
by   Guy Amir, et al.
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In this short paper, we present our ongoing work on the veriFIRE project – a collaboration between industry and academia, aimed at using verification for increasing the reliability of a real-world, safety-critical system. The system we target is an airborne platform for wildfire detection, which incorporates two deep neural networks. We describe the system and its properties of interest, and discuss our attempts to verify the system's consistency, i.e., its ability to continue and correctly classify a given input, even if the wildfire it describes increases in intensity. We regard this work as a step towards the incorporation of academic-oriented verification tools into real-world systems of interest.

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